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DOPCA: A New Method for Calculating Ontology-Based Semantic Similarity

机译:DOPCA:一种新的基于本体的语义相似度计算方法

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Although semantic similarity has been broadly applied in artificial intelligence and related fields, the calculation of such similarity still remains a great challenge, appealing for the development of effective methods that can be flexibly applied to a diversity of domains. In this paper, we first review existing methods that rely on an ontology to calculate semantic similarity. We classify these methods into three categories: methods based on the structure of an ontology, methods based on the information content of an ontology, and methods that utilize multiple properties of an ontology in a hybrid manner, and we analyze the advantages and limitations of these methods. Then, we propose a novel method called DOPCA that relies on the structure of an ontology to calculate semantic similarity. Our method combines two similarity measures, the degrees of overlap in paths (DOP) and the depth of the lowest common ancestor node (DLCA), and uses their weighted summation to quantify the relatedness of terms in an ontology. We apply our method to the gene ontology (GO) and the plant ontology (PO), and we show the well agreement of our method with two existing methods. Finally, we show that our method is capable of overcoming the limitation of existing methods that overlook the existence of multiple lowest common ancestor nodes, and we analyze the flexibility of our method when applied to ontologies of different domains.
机译:尽管语义相似性已广泛应用于人工智能及其相关领域,但是这种相似性的计算仍然是一个巨大的挑战,这呼吁开发可以灵活应用于多种领域的有效方法。在本文中,我们首先回顾了依靠本体来计算语义相似度的现有方法。我们将这些方法分为三类:基于本体结构的方法,基于本体信息内容的方法以及以混合方式利用本体的多个属性的方法,并分析了这些方法的优点和局限性方法。然后,我们提出了一种称为DOPCA的新颖方法,该方法依赖于本体的结构来计算语义相似度。我们的方法结合了两个相似性度量,即路径中的重叠度(DOP)和最低公共祖先节点的深度(DLCA),并使用它们的加权求和来量化本体中各项的相关性。我们将我们的方法应用于基因本体论(GO)和植物本体论(PO),并且我们的方法与两种现有方法显示出很好的一致性。最后,我们证明了我们的方法能够克服现有方法的局限性,而现有方法忽略了多个最低公共祖先节点的存在,并且我们分析了该方法应用于不同领域的本体时的灵活性。

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